Modelling the risk of snow damage to forests under short-term snow loading

Citation
Ml. Paatalo et al., Modelling the risk of snow damage to forests under short-term snow loading, FOREST ECOL, 116(1-3), 1999, pp. 51-70
Citations number
60
Categorie Soggetti
Plant Sciences
Journal title
FOREST ECOLOGY AND MANAGEMENT
ISSN journal
03781127 → ACNP
Volume
116
Issue
1-3
Year of publication
1999
Pages
51 - 70
Database
ISI
SICI code
0378-1127(19990412)116:1-3<51:MTROSD>2.0.ZU;2-4
Abstract
Regression models are developed to assess the risk of snow damage to Scots pine (Pinus sylvestris L.), Norway spruce (Picea abies (L.) Karst) and birc h (Betula spp.) stands based on simulated data, employing a mechanistic win d and snow damage model developed by Peltola et al., 1998a. The risk is pre dicted in terms of the critical windspeed needed to cause stem breakage and uprooting of trees at forest edges under short-term snow loading. Separate regression models are developed for each tree species using stem taper (br east height diameter of stem relative to tree height, d(1.3)/h), stand dens ity, snow loading and distance from the stand edge as variables, and a gene ral model for stem breakage and uprooting is also proposed having tree spec ies as an additional dummy variable. The overall risk of stem breakage and uprooting is shown to increase with snow loading and decrease with increasi ng stem taper and stand density for all three tree species, although Scots pines and Norway spruces are predicted to be much more susceptible to snow damage than birches, which, being leafless, had much less crown area for sn ow attachment and wind loading. The greatest susceptibility to stern breaka ge and uprooting is seen at the stand edge, where the risk due to wind load ing is much greater than inside the stand. Under these circumstances, sligh tly tapering Scots pines and Norway spruces are found to be the most vulner able under a snow load of 60 kg m(-2), suffering damage at windspeeds of <9 m s(-1) at a constant height of 10 m above the ground, i.e. these windspee ds enhance the risk, whereas higher speeds can be expected to dislodge the snow from the crowns. Birches will only exceptionally be broken and uproote d at windspeeds of <9 m s(-1) according to the models developed here. Since the general models give rise to somewhat greater residuals compared with t he simulated data than do the single tree species models, it seems that the latter will give more reliable predictions of the risk of snow damage, The models could be useful when discussing the risk of snow damage in connecti on with alternative forms of stand management, especially in high risk area s, enabling high-risk trees to be removed during thinning. (C) 1999 Elsevie r Science B.V. All rights reserved.